Evolutionary support vector machines: A dual approach

M. L. D. Dias, A. Neto
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引用次数: 11

Abstract

A theoretical advantage of large margin classifiers such as Support Vector Machines (SVM) concerns the empirical and structural risk minimization which balances the model complexity against its success at fitting the training data. Metaheuristics have been used in order to select features, to tune hyperparameters or even to achieve a reduced-set of support vectors for SVM. Although these tasks are interesting, metaheuristics do not play an important role in the process of solving the dual quadratic optimization problem, which arises from Support Vector Machines. Well-known methods such as, Sequential Minimal Optimization, Kernel Adatron and classical mathematical methods have been applied with this goal. In this paper, we propose the use of Genetic Algorithms to solve such quadratic optimization problem. Our proposal is promising when compared with those aforementioned methods because it does not need complex mathematical calculations and, indeed, the problem is solved in an astonishingly straightforward way. To achieve this goal, we successfully model an instance of Genetic Algorithms to handle the dual optimization problem and its constraints in order to obtain the Lagrange multipliers as well as the bias for the decision function.
进化支持向量机:一种双重方法
支持向量机(SVM)等大余量分类器的理论优势涉及经验和结构风险最小化,它平衡了模型复杂性与其在拟合训练数据方面的成功。元启发式已被用于选择特征,调整超参数,甚至实现支持向量机的简化支持向量集。虽然这些任务很有趣,但元启发式在解决由支持向量机产生的对偶二次优化问题的过程中并没有发挥重要作用。众所周知的方法,如序列最小优化,内核Adatron和经典数学方法已被应用于这一目标。在本文中,我们提出使用遗传算法来解决这类二次优化问题。与上述方法相比,我们的建议是有希望的,因为它不需要复杂的数学计算,而且确实以一种令人惊讶的直接方式解决了这个问题。为了实现这一目标,我们成功地建立了一个遗传算法实例来处理对偶优化问题及其约束,以获得拉格朗日乘子和决策函数的偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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